Windows malware detection based on static analysis with multiple features

被引:0
作者
Yousuf M.I. [1 ]
Anwer I. [2 ]
Riasat A. [3 ]
Zia K.T. [1 ]
Kim S. [4 ]
机构
[1] Department of Computer Science, University of Engineering and Technology Lahore, Lahore
[2] Department of Transportation Engineering and Management, University of Engineering and Technology Lahore, Lahore
[3] Department of Basic Sciences and Humanities, University of Engineering and Technology Lahore, Lahore
[4] Centre for Artificial Intelligence, Korea Institute of Science and Technology, Seoul
关键词
Machine learning; Multiple features; Static malware analysis; Windows PE;
D O I
10.7717/PEERJ-CS.1319
中图分类号
学科分类号
摘要
Malware or malicious software is an intrusive software that infects or performs harmful activities on a computer under attack. Malware has been a threat to individuals and organizations since the dawn of computers and the research community has been struggling to develop efficient methods to detect malware. In this work, we present a static malware detection system to detect Portable Executable (PE) malware in Windows environment and classify them as benign or malware with high accuracy. First, we collect a total of 27,920 Windows PE malware samples divided into six categories and create a new dataset by extracting four types of information including the list of imported DLLs and API functions called by these samples, values of 52 attributes from PE Header and 100 attributes of PE Section. We also amalgamate this information to create two integrated feature sets. Second, we apply seven machine learning models; gradient boosting, decision tree, random forest, support vector machine, K-nearest neighbor, naive Bayes, and nearest centroid, and three ensemble learning techniques including Majority Voting, Stack Generalization, and AdaBoost to classify the malware. Third, to further improve the performance of our malware detection system, we also deploy two dimensionality reduction techniques: Information Gain and Principal Component Analysis. We perform a number of experiments to test the performance and robustness of our system on both raw and selected features and show its supremacy over previous studies. By combining machine learning, ensemble learning and dimensionality reduction techniques, we construct a static malware detection system which achieves a detection rate of 99.5% and error rate of only 0.47%. © 2023 Yousuf et al.
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